Gonda Brain Research Center, Bar Ilan University, Ramat Gan, Israel.
J Neurosci Methods. 2010 Aug 15;191(1):45-59. doi: 10.1016/j.jneumeth.2010.06.005. Epub 2010 Jun 11.
Stimulation is extensively used in neuroscience research in diverse fields ranging from cognitive to clinical. Studying the effect of electrical and magnetic stimulation on neuronal activity is complicated by large stimulation-derived artifacts on the recording electrodes, which mask the spiking activity. Multiple studies have suggested a variety of solutions for the removal of artifacts and were typically directed at specific stimulation setups. In this study we introduce a generalized framework for stimulus artifacts removal, the Stimulus Artifact Removal Graphical Environment (SARGE). The framework provides an encapsulated environment for a multi-stage removal process, starting from the stimulus pulse detection, through estimation of the artifacts and their removal, and finally to signal reconstruction and the assessment of removal quality. The framework provides the user with subjective graphical and objective quantitative tools for assessing the resulting signal, and the ability to adjust the process to optimize the results. This extendable publicly available framework supports different types of stimulation, stimulation patterns and shapes, and a variety of artifact estimation methods. We exemplify the removal of artifacts generated by electrical micro- and macro-stimulation and magnetic stimulation and different stimulation protocols. The use of different estimation methods, such as averaging and function fitting is demonstrated, and the differences between them are discussed. Finally, the quality of removal is assessed and validated using quantitative measures and combined experimental-simulation studies. The framework marks a shift from "algorithm" and "data" centric approach to a "workflow" centric approach, thus introducing an innovative concept to the artifact removal process.
刺激在从认知到临床等不同领域的神经科学研究中被广泛应用。研究电刺激和磁刺激对神经元活动的影响很复杂,因为在记录电极上会产生很大的刺激衍生伪迹,从而掩盖了尖峰活动。多项研究提出了多种去除伪迹的解决方案,这些方案通常针对特定的刺激设置。在这项研究中,我们引入了一种用于刺激伪迹去除的通用框架,即刺激伪迹去除图形环境(SARGE)。该框架为多阶段去除过程提供了一个封装的环境,从刺激脉冲检测开始,通过估计伪迹及其去除,最后进行信号重建和去除质量评估。该框架为用户提供了评估结果信号的主观图形和客观定量工具,并具有调整过程以优化结果的能力。这个可扩展的、公开可用的框架支持不同类型的刺激、刺激模式和形状,以及各种伪迹估计方法。我们举例说明了电微刺激和宏刺激以及不同刺激方案产生的伪迹的去除。演示了不同的估计方法,如平均和函数拟合,并讨论了它们之间的差异。最后,使用定量测量和组合实验模拟研究来评估和验证去除的质量。该框架标志着从“算法”和“数据”为中心的方法向“工作流程”为中心的方法的转变,从而为伪迹去除过程引入了一个创新的概念。